earnings-recap
決算発表後の分析。実績EPSと予想EPSの比較、株価反応、マージントレンドをカバー。
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Earnings Recap Skill
Generates a post-earnings analysis using Yahoo Finance data via yfinance. Covers the actual vs estimated numbers, surprise magnitude, stock price reaction, and financial context — a complete picture of what happened.
Important: Data is for research and educational purposes only. Not financial advice. yfinance is not affiliated with Yahoo, Inc.
Step 1: Ensure yfinance Is Available
Current environment status:
!`python3 -c "import yfinance; print('yfinance ' + yfinance.__version__ + ' installed')" 2>/dev/null || echo "YFINANCE_NOT_INSTALLED"`
If YFINANCE_NOT_INSTALLED, install it:
import subprocess, sys
subprocess.check_call([sys.executable, "-m", "pip", "install", "-q", "yfinance"])
If already installed, skip to the next step.
Step 2: Identify the Ticker and Gather Data
Extract the ticker from the user's request. Fetch all relevant post-earnings data in one script.
import yfinance as yf
import pandas as pd
from datetime import datetime, timedelta
ticker = yf.Ticker("AAPL") # replace with actual ticker
# --- Earnings result ---
earnings_hist = ticker.earnings_history
# --- Financial statements ---
quarterly_income = ticker.quarterly_income_stmt
quarterly_cashflow = ticker.quarterly_cashflow
quarterly_balance = ticker.quarterly_balance_sheet
# --- Price reaction ---
# Get ~30 days of history to capture the reaction window
hist = ticker.history(period="1mo")
# --- Context ---
info = ticker.info
news = ticker.news
recommendations = ticker.recommendations
What to extract
| Data Source | Key Fields | Purpose |
|---|---|---|
earnings_history | epsEstimate, epsActual, epsDifference, surprisePercent | Beat/miss result |
quarterly_income_stmt | TotalRevenue, GrossProfit, OperatingIncome, NetIncome, BasicEPS | Actual financials |
history() | Close prices around earnings date | Stock price reaction |
info | currentPrice, marketCap, forwardPE | Current context |
news | Recent headlines | Earnings-related news |
Step 3: Determine the Most Recent Earnings
The most recent earnings result is the first row (most recent date) in earnings_history. Use its date to:
- Identify the earnings date for the price reaction analysis
- Match to the corresponding quarter in the financial statements
- Calculate stock price reaction — compare the close before earnings to the next trading day's close (or open, depending on whether earnings were before/after market)
Price reaction calculation
import numpy as np
# Find the earnings date from earnings_history index
earnings_date = earnings_hist.index[0] # most recent
# Get daily prices around the earnings date
hist_extended = ticker.history(start=earnings_date - timedelta(days=5),
end=earnings_date + timedelta(days=5))
# The reaction is typically measured as:
# - Close on the last trading day before earnings -> Close on the first trading day after
# Be careful with before/after market reports
if len(hist_extended) >= 2:
pre_price = hist_extended['Close'].iloc[0]
post_price = hist_extended['Close'].iloc[-1]
reaction_pct = ((post_price - pre_price) / pre_price) * 100
Note: The exact reaction window depends on when the company reported (before market open vs after close). The price data will reflect this — look for the biggest gap between consecutive closes near the earnings date.
Step 4: Build the Earnings Recap
Section 1: Headline Result
Lead with the key numbers:
- EPS: Actual vs. Estimate, beat/miss by how much, surprise %
- Revenue: Actual vs. prior year (from quarterly_income_stmt TotalRevenue)
- Stock reaction: % move on earnings day
Example: "AAPL beat Q3 EPS estimates by 3.7% ($1.40 actual vs $1.35 expected). Revenue grew 5.4% YoY to $94.3B. The stock rose +2.1% on the report."
Section 2: Earnings vs. Estimates Detail
| Metric | Estimate | Actual | Surprise |
|---|---|---|---|
| EPS | $1.35 | $1.40 | +$0.05 (+3.7%) |
If the user asked about a specific quar
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